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Lecture
Kernel Regression: Weighted Average and Feature Maps
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Machine Learning Fundamentals: Regularization and Cross-validation
Explores overfitting, regularization, and cross-validation in machine learning, emphasizing the importance of feature expansion and kernel methods.
Kernel Methods: Understanding Overfitting and Model Selection
Discusses kernel methods, focusing on overfitting, model selection, and kernel functions in machine learning.
Feature Expansion: Kernels and KNN
Covers feature expansion, kernels, and K-nearest neighbors, including non-linearity, SVM, and Gaussian kernels.
Nonparametric Statistics: Bayesian Approach
Explores non-parametric statistics, Bayesian methods, and linear regression with a focus on kernel density estimation and posterior distribution.
Supervised Learning: Classification and Regression
Covers supervised learning, classification, regression, decision boundaries, overfitting, Perceptron, SVM, and logistic regression.
Untitled
Kernel Ridge Regression: Equivalence, Representer Theorem, and Kernel Trick
Explores Kernel Ridge Regression, the Representer Theorem, and the Kernel Trick in machine learning.
Non-parametric Regression: Smoothing Techniques
Explores non-parametric regression techniques, including splines, bias-variance tradeoff, orthogonal functions, wavelets, and modulation estimators.
Summary of Result for Linear Regression
Summarizes the result for linear regression and introduces Vapnik-Chervonenkis dimension and growth function.
Generalized Linear Models II: GLM Extensions
Covers advanced topics in Generalized Linear Models, focusing on link functions, error distributions, and model interpretation.